Logo for Neurons Lab

Data Engineer

Role overview

Qualifications

  • 4+ years in data engineering, with strong AWS + Spark / SQL at scale
  • Demonstrated experience harmonizing / integrating data across multiple source systems
  • Experience building validated, reproducible pipelines in a regulated environment (BFSI, healthcare, government)
  • Strong SQL and Python for large-scale data processing

Responsibilities

  • Reproduce a descriptive-statistics report end-to-end
  • Profile and reconcile differing source schemas across acquired entities
  • Build dbt staging → intermediate → mart models with tests
  • Implement and verify anonymization / pseudonymization techniques

About the company

Neurons Lab logo

Neurons Lab

Research

Company details

Company typeScaleup
IndustryResearch

Your match analysis

See how your profile stacks up against this role.

We compared the job requirements to your profile to show where you're strong and where you fall short.

Job description

About the project (description, duration, stage)

Join Neurons Lab as a Data Engineer on a new engagement with a regulated UK & Ireland credit and lending company. The client has lifted data from multiple business entities into a newly centralized, anonymized data lake, but lacks the data-engineering depth to make it trustworthy and analytics-ready: current pipelines were assembled quickly (partly AI-assisted), and the descriptive statistics cannot yet be validated or reproduced.

You put that foundation on solid ground so the Data Science Lead can model on it with confidence — validate and re-engineer the pipelines, build the harmonization / semantic layer across entities, enforce data quality and lineage, and prepare clean, feature-ready datasets.

This is a foundational data-engineering role on a regulated data estate; data protection and reproducibility are the primary constraints on every decision.

Full-time engagement preferable.

What you'll actually do (example tasks)

  • Reproduce a descriptive-statistics report end-to-end so any figure traces back to raw source — closing the gap the client admitted (numbers they can't currently defend).

  • Profile and reconcile differing source schemas across acquired entities: map differing field names, types, encodings and business definitions for the same concept into one conformed model.

  • Build dbt staging → intermediate → mart models with tests; codify the harmonized definitions the Data Science Lead specifies.

  • Write Great Expectations suites (null / range / uniqueness / referential checks) and wire them into the pipeline so bad data fails loudly rather than silently corrupting analysis.

  • Implement entity / identity resolution (deterministic + fuzzy matching) where there is no clean shared key for the same customer or account across sources.

  • Implement and verify anonymization / pseudonymization (hashing / tokenization / k-anonymity) and evidence that re-identification risk is controlled for the client's IT / compliance team.

  • Optimize Spark / Glue jobs over tens of millions of rows — partitioning, file formats (Parquet), incremental loads, cost control.

  • Orchestrate with Airflow / Step Functions; build repeatable, scheduled pipelines rather than one-off scripts.

  • Prepare clean, documented, feature-ready datasets for the PD / delinquency models.

  • Document runbooks so the offshore team can operate the pipelines and handover takes days, not weeks; help scope onboarding of the remaining (Ireland + additional) sources.

Skills

  • Strong SQL and Python for large-scale data processing

  • AWS data stack: S3, Glue, Lake Formation, Athena / Redshift, EMR / Spark, Step Functions / Airflow

  • Data modeling & semantic layer (dbt or equivalent); dimensional modeling

  • Entity resolution / record linkage across heterogeneous sources

  • Data-quality & testing frameworks (Great Expectations, dbt tests) and data lineage

  • Anonymization / pseudonymization techniques and their analytical trade-offs

  • Big-data processing (Spark) with performance and cost optimization at scale

  • Clear written / verbal English; documents for handover and works well with a distributed team

Knowledge

  • GDPR fundamentals as applied to anonymized / pseudonymized financial data and UK / EU data residency

  • AWS Well-Architected (Analytics, Security) for BFSI

  • Awareness of credit / risk data structures and what downstream modeling consumers need — a plus

Experience

  • 4+ years in data engineering, with strong AWS + Spark / SQL at scale

  • Demonstrated experience harmonizing / integrating data across multiple source systems

  • Experience building validated, reproducible pipelines in a regulated environment (BFSI, healthcare, government) — strong plus

  • Comfortable stepping into a messy, partly-built data estate and bringing it up to standard

  • Comfortable as the sole or lead data engineer on a small (3–4 person) delivery pod

Apply once. Then go straight to the hiring manager.

After you apply, unlock the direct contact details of the people who actually make the call. A quick follow-up makes you 5x more likely to land an interview.

MR

Marcus Rivera

Chief Revenue Officer

m.rivera@company.com
linkedin.com/in/marcusrivera
Unlocked after you apply
·

Data Engineer Related jobs

Other jobs at Neurons Lab

Premium

Reach out to the hiring manager directly.

Gain access to the contact details of the hiring managers who actually decide, and reach out to network with them directly. That, plus more when you upgrade:

  • Full match report with fit score and gaps
  • Career diagnostics on how recruiters read you
  • Curated company matches and warm intros
  • 48h early access to new roles

Cancel anytime.